Incident duration prediction using a bi-level machine learning framework with outlier removal and intra-extra joint optimisation

05/10/2022
by   Artur Grigorev, et al.
9

Predicting the duration of traffic incidents is a challenging task due to the stochastic nature of events. The ability to accurately predict how long accidents will last can provide significant benefits to both end-users in their route choice and traffic operation managers in handling of non-recurrent traffic congestion. This paper presents a novel bi-level machine learning framework enhanced with outlier removal and intra-extra joint optimisation for predicting the incident duration on three heterogeneous data sets collected for both arterial roads and motorways from Sydney, Australia and San-Francisco, U.S.A. Firstly, we use incident data logs to develop a binary classification prediction approach, which allows us to classify traffic incidents as short-term or long-term. We find the optimal threshold between short-term versus long-term traffic incident duration, targeting both class balance and prediction performance while also comparing the binary versus multi-class classification approaches. Secondly, for more granularity of the incident duration prediction to the minute level, we propose a new Intra-Extra Joint Optimisation algorithm (IEO-ML) which extends multiple baseline ML models tested against several regression scenarios across the data sets. Final results indicate that: a) 40-45 min is the best split threshold for identifying short versus long-term incidents and that these incidents should be modelled separately, b) our proposed IEO-ML approach significantly outperforms baseline ML models in 66% of all cases showcasing its great potential for accurate incident duration prediction. Lastly, we evaluate the feature importance and show that time, location, incident type, incident reporting source and weather at among the top 10 critical factors which influence how long incidents will last.

READ FULL TEXT

page 6

page 7

page 8

page 14

page 22

page 23

page 25

page 26

research
05/29/2019

Arterial incident duration prediction using a bi-level framework of extreme gradient-tree boosting

Predicting traffic incident duration is a major challenge for many traff...
research
02/24/2023

TrafFormer: A Transformer Model for Prediction Long-term Traffic

Traffic prediction is a flourishing research field due to its importance...
research
09/19/2022

Traffic incident duration prediction via a deep learning framework for text description encoding

Predicting the traffic incident duration is a hard problem to solve due ...
research
06/26/2020

Graph modelling approaches for motorway traffic flow prediction

Traffic flow prediction, particularly in areas that experience highly dy...
research
04/23/2023

Machine learning framework for end-to-end implementation of Incident duration prediction

Traffic congestion caused by non-recurring incidents such as vehicle cra...
research
10/18/2021

Eigenbehaviour as an Indicator of Cognitive Abilities

With growing usage of machine learning algorithms and big data in health...
research
11/06/2020

Highly Available Data Parallel ML training on Mesh Networks

Data parallel ML models can take several days or weeks to train on sever...

Please sign up or login with your details

Forgot password? Click here to reset